Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

Basically I have a problem that is pretty much embrassing parallel and I think I've hit the limits of how fast I can make it with plain python & multiprocessing so I'm now attempting to take it to a lower level via Cython and hopefully openMP.

So in short I am wondering how I can employ openMP with Cython, or if I'll have to wrap some raw C code and load/bind to it via Cython?

Or can I have Cython compile down to C code then modify the C code to add in the openMP pragmas in then compile to library and load it into Python?

share|improve this question
up vote 1 down vote accepted

According to the cython wiki, the developers have thought about a variety of options, but I don't believe they have implemented anything yet.

If your problem is embarrassingly parallel, and you already have a multi-processing solution, why not just get each worker process to call some cython code instead of python code?

share|improve this answer
That's what I did previously, and it works, but I was running into large memory consumption by each process copying the data over... Then I did:… which improved things via having a shared memory lockfree, but its still too slow. So its time for C I believe. – Pharaun Jan 30 '11 at 17:58
In that case you're probably best off writing OpenMP enabled C (or fortran) code. I have found the instructions at… work quite well for fortran, you can probably do something similar in C , then wrap it conveniently using cython. I prefer fortran 90 over C because you can write array operations just like you do in python with numpy. – DaveP Jan 31 '11 at 6:45
I've successfully implemented this in C and used cython to link it in. – Pharaun Apr 1 '11 at 4:33

This question is from 3 years ago and nowadays Cython has available functions that support the OpenMP backend. See for example the documentation here. One very convenient function is the prange. This is one example of how a (rather naive) dot function could be implemented using prange.

Don't forget to compile passing the "/opemmp" argument to the C compiler.

import numpy as np
cimport numpy as np
import cython
from cython.parallel import prange

ctypedef np.double_t cDOUBLE
DOUBLE = np.float64

def mydot(np.ndarray[cDOUBLE, ndim=2] a, np.ndarray[cDOUBLE, ndim=2] b):

    cdef np.ndarray[cDOUBLE, ndim=2] c
    cdef int i, M, N, K

    c = np.zeros((a.shape[0], b.shape[1]), dtype=DOUBLE)
    M = a.shape[0]
    N = a.shape[1]
    K = b.shape[1]

    for i in prange(M, nogil=True):
        multiply(&a[i,0], &b[0,0], &c[i,0], N, K)

    return c

cdef void multiply(double *a, double *b, double *c, int N, int K) nogil:
    cdef int j, k
    for j in range(N):
        for k in range(K):
            c[k] += a[j]*b[k+j*K]
share|improve this answer
+1 for the code example for @yanlend's answer. gcc requires -fopenmp. Note: was faster in my time measurements. You could accept typed memoryviews as an input. – J.F. Sebastian Apr 5 '14 at 16:40
@J.F.Sebastian thanks, this dot versions is naive compared to the LAPACK (or similar) routines behind, but is a good example. I don't believe memory views would be faster than this, have you tried that? – Saullo Castro Apr 5 '14 at 18:37
I'm aware it is naive (it is the first word in cydot.pyx description). Usually parallel computations are used to improve time performance. It is worth mentioning that it is not the case. About typed memoryviews: they produce simpler (no GIL for memoryview indexing, slicing), more general (non-numpy types are also accepted) and sometimes faster code (I haven't checked in this case). – J.F. Sebastian Apr 5 '14 at 19:47

If somebody stumbles over this question:

Now, there is direct support for OpenMP in cython via the cython.parallel module, see

share|improve this answer

I've no experience with OpenMP, but you may have luck with trying zeromq (python bindings included):

easy_install pyzmq

share|improve this answer
I've heard good thing about zeromq, should put it on my list of thing to do :) But my problem is I want to avoid interprocess communication because this adds overhead and it explodes memory usage. Which is why I'm wanting to move to openMP/pthreads so I can have a shared data array of numpy arrays (read only) – Pharaun Jan 30 '11 at 3:14

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.